Intelligent Control and Robotics Institute, College of Automation, Hangzhou Dianzi University, Hangzhou, China.
Key Laboratory of Brain Machine Collaborative Intelligence of Zhejiang Province, Hangzhou, China.
Int J Comput Assist Radiol Surg. 2020 Dec;15(12):1951-1962. doi: 10.1007/s11548-020-02266-0. Epub 2020 Sep 28.
Bone age assessment is not only an important means of assessing maturity of adolescents, but also plays an indispensable role in the fields of orthodontics, kinematics, pediatrics, forensic science, etc. Most studies, however, do not take into account the impact of background noise on the results of the assessment. In order to obtain accurate bone age, this paper presents an automatic assessment method, for bone age based on deep convolutional neural networks.
Our method was divided into two phases. In the image segmentation stage, the segmentation network U-Net was used to acquire the mask image which was then compared with the original image to obtain the hand bone portion after removing the background interference. For the classification phase, in order to further improve the evaluation performance, an attention mechanism was added on the basis of Visual Geometry Group Network (VGGNet). Attention mechanisms can help the model invest more resources in important areas of the hand bone.
The assessment model was tested on the RSNA2017 Pediatric Bone Age dataset. The results show that our adjusted model outperforms the VGGNet. The mean absolute error can reach 9.997 months, which outperforms other common methods for bone age assessment.
We explored the establishment of an automated bone age assessment method based on deep learning. This method can efficiently eliminate the influence of background interference on bone age evaluation, improve the accuracy of bone age evaluation, provide important reference value for bone age determination, and can aid in the prevention of adolescent growth and development diseases.
骨龄评估不仅是评估青少年成熟度的重要手段,而且在正畸学、运动学、儿科学、法医学等领域也发挥着不可或缺的作用。然而,大多数研究都没有考虑背景噪声对评估结果的影响。为了获得准确的骨龄,本文提出了一种基于深度卷积神经网络的自动评估方法。
我们的方法分为两个阶段。在图像分割阶段,使用分割网络 U-Net 获取掩模图像,然后将其与原始图像进行比较,以获得去除背景干扰后的手部骨骼部分。在分类阶段,为了进一步提高评估性能,在视觉几何组网络(VGGNet)的基础上添加了注意力机制。注意力机制可以帮助模型在手部骨骼的重要区域投入更多资源。
该评估模型在 RSNA2017 儿科骨龄数据集上进行了测试。结果表明,我们调整后的模型优于 VGGNet。平均绝对误差可达到 9.997 个月,优于其他常见的骨龄评估方法。
我们探索了基于深度学习建立自动骨龄评估方法。该方法可以有效地消除背景干扰对骨龄评估的影响,提高骨龄评估的准确性,为骨龄确定提供重要的参考价值,并有助于预防青少年生长发育疾病。